Credal Human Activity Recognition Based-HMM by Combining Hierarchical and Temporal Reasoning
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Abstract
Human activities recognition in videos sequences
is a very current research topic being investigated in computer
vision. This paper offers an approach for video analysis by
exploiting hidden Markov models. We propose an extension of the
standard model by integrating three abstraction layers through the
management of hierarchical structure and the temporal evolution
of events. In addition, data imperfections are also managed
through a more generic framework than the probabilistic that is
the Transferable Belief Model. The proposed approach has been
assessed with the “baggage abandoned” scenario of PETS’06
dataset of computer vision community. Lastly, the proposed
scenario recognition system performance is analysed and
compared to the result of classic HMM models.
